Communication Efficient Tensor Factorization for Decentralized Healthcare Networks.

Jing Ma, Qiuchen Zhang, Jian Lou, Li Xiong, Sivasubramanium Bhavani, Joyce C Ho
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Abstract

Tensor factorization has been proved as an efficient unsupervised learning approach for health data analysis, especially for computational phenotyping, where the high-dimensional Electronic Health Records (EHRs) with patients history of medical procedures, medications, diagnosis, lab tests, etc., are converted to meaningful and interpretable medical concepts. Federated tensor factorization distributes the tensor computation to multiple workers under the coordination of a central server, which enables jointly learning the phenotypes across multiple hospitals while preserving the privacy of the patient information. However, existing federated tensor factorization algorithms encounter the single-point-failure issue with the involvement of the central server, which is not only easily exposed to external attacks, but also limits the number of clients sharing information with the server under restricted uplink bandwidth. In this paper, we propose CiderTF, a communication-efficient decentralized generalized tensor factorization, which reduces the uplink communication cost by leveraging a four-level communication reduction strategy designed for a generalized tensor factorization, which has the flexibility of modeling different tensor distribution with multiple kinds of loss functions. Experiments on two real-world EHR datasets demonstrate that CiderTF achieves comparable convergence with the communication reduction up to 99.99%.

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针对分散式医疗保健网络的通信高效张量因式分解。
张量因式分解已被证明是一种高效的无监督学习方法,可用于健康数据分析,特别是计算表型分析。在计算表型分析中,包含患者医疗程序、用药、诊断、化验等病史的高维电子健康记录(EHR)被转换为有意义且可解释的医学概念。联邦张量因子化技术在中央服务器的协调下,将张量计算分配给多个工作人员,从而实现了跨多家医院的表型联合学习,同时保护了患者信息的隐私。然而,现有的联合张量因式分解算法在中央服务器的参与下存在单点故障问题,不仅容易受到外部攻击,而且在上行带宽受限的情况下限制了与服务器共享信息的客户端数量。本文提出了一种通信效率高的去中心化广义张量因式分解(CiderTF),它利用为广义张量因式分解设计的四级通信缩减策略降低了上行链路通信成本,而广义张量因式分解可以灵活地对具有多种损失函数的不同张量分布进行建模。在两个真实世界的电子病历数据集上进行的实验证明,CiderTF 实现了相当的收敛性,通信降低率高达 99.99%。
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Enhancing Personalized Healthcare via Capturing Disease Severity, Interaction, and Progression. Heterogeneous Treatment Effect Estimation with Subpopulation Identification for Personalized Medicine in Opioid Use Disorder. RoS-KD: A Robust Stochastic Knowledge Distillation Approach for Noisy Medical Imaging. Robust Unsupervised Domain Adaptation from A Corrupted Source. Communication Efficient Tensor Factorization for Decentralized Healthcare Networks.
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